Literature DB >> 12801032

Contribution of artificial neural networks to the classification and treatment of patients with uninvestigated dyspepsia.

A Andriulli1, E Grossi, M Buscema, V Festa, N M Intraligi, P Dominici, R Cerutti, F Perri.   

Abstract

OBJECTIVES: To verify whether symptoms reported by patients with uninvestigated dyspepsia might be helpful in either classifying functional from organic dyspepsia (1st experiment), or recognising which Helicobacter pylori infected patients may benefit from eradication therapy (2nd experiment).
METHODS: We compared the performance of artificial neural networks and linear discriminant analysis in two experiments on a database including socio-demographic features, past medical history, alarming symptoms, and symptoms at presentation of 860 patients with uninvestigated dyspepsia enrolled in a large observational multi-centre Italian study.
RESULTS: In the 1st experiment, the best prediction for organic disease was given by the Sine Net model (specificity of 87.6% with 13 patients misclassified) and the best prediction for functional dyspepsia by the FF Bp model (sensitivity of 83.4% with 56 patients misclassified). The highest global accuracy of linear discriminant analysis was 65.1%, with 150 patients misclassified. In the 2nd experiment, the highest predictive performance was provided by the SelfDASn model: all infected patients who became symptom-free after successful eradicating treatment were correctly classified, whereas nine errors were made in forecasting patients who did not benefit from such a therapy. The highest global performance of linear discriminant analysis was 53.2%, with 37 patients misclassified.
CONCLUSIONS: In patients with uninvestigated dyspepsia, artificial neural networks might have potential for categorising those affected by either organic or functional dyspepsia, as well as for identifying all Helicobacter pylori infected dyspeptic patients who will benefit from eradication.

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Year:  2003        PMID: 12801032     DOI: 10.1016/s1590-8658(03)00057-4

Source DB:  PubMed          Journal:  Dig Liver Dis        ISSN: 1590-8658            Impact factor:   4.088


  4 in total

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Journal:  PLoS One       Date:  2011-11-04       Impact factor: 3.240

2.  Outcome predictors in autism spectrum disorders preschoolers undergoing treatment as usual: insights from an observational study using artificial neural networks.

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Journal:  Neuropsychiatr Dis Treat       Date:  2015-06-30       Impact factor: 2.570

3.  Comparison of adaptive neuro-fuzzy inference system and artificial neutral networks model to categorize patients in the emergency department.

Authors:  Dhifaf Azeez; Mohd Alauddin Mohd Ali; Kok Beng Gan; Ismail Saiboon
Journal:  Springerplus       Date:  2013-08-29

4.  Development of machine learning models to predict RT-PCR results for severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) in patients with influenza-like symptoms using only basic clinical data.

Authors:  Thomas Langer; Martina Favarato; Riccardo Giudici; Gabriele Bassi; Roberta Garberi; Fabiana Villa; Hedwige Gay; Anna Zeduri; Sara Bragagnolo; Alberto Molteni; Andrea Beretta; Matteo Corradin; Mauro Moreno; Chiara Vismara; Carlo Federico Perno; Massimo Buscema; Enzo Grossi; Roberto Fumagalli
Journal:  Scand J Trauma Resusc Emerg Med       Date:  2020-12-01       Impact factor: 2.953

  4 in total

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